A&A 464, 399-404 (2007)
DOI: 10.1051/0004-6361:20066170
Why your model parameter confidences might be too optimistic. Unbiased estimation of the inverse covariance matrix
J. Hartlap, P. Simon, and P. SchneiderArgelander-Institut (Founded by merging of the Sternwarte, Radioastronomisches Institut and Institut für Astrophysik und Extraterrestrische Forschung der Universität Bonn.) für Astronomie, Universität Bonn, Auf dem Hügel 71, 53121 Bonn, Germany
e-mail: hartlap@astro.uni-bonn.de
(Received 3 August 2006 / Accepted 24 November 2006)
Abstract
Aims.The maximum-likelihood method is the standard approach to
obtain model fits to observational data and the corresponding
confidence regions. We investigate possible sources of bias in the
log-likelihood function and its subsequent analysis, focusing on
estimators of the inverse covariance matrix. Furthermore, we study
under which circumstances the estimated covariance matrix is
invertible.
Methods.We perform Monte-Carlo simulations to investigate the
behaviour of estimators for the inverse covariance matrix, depending
on the number of independent data sets and the number of variables of
the data vectors.
Results.We find that the inverse of the
maximum-likelihood estimator of the covariance is biased, the amount
of bias depending on the ratio of the number of bins (data vector
variables), p, to the number of data sets, n. This bias inevitably
leads to an - in extreme cases catastrophic - underestimation of the
size of confidence regions. We report on a method to remove this bias
for the idealised case of Gaussian noise and statistically independent
data vectors. Moreover, we demonstrate that marginalisation over
parameters introduces a bias into the marginalised log-likelihood
function. Measures of the sizes of confidence regions suffer from the
same problem. Furthermore, we give an analytic proof for the fact
that the estimated covariance matrix is singular if p>n.
Key words: methods: analytical -- methods: data analysis -- gravitational lensing
© ESO 2007

BibSonomy
CiteUlike
Del.icio.us
Digg
Facebook
Mendeley
Twitter